期刊论文详细信息
BMC Public Health
Attrition and generalizability in longitudinal studies: findings from a 15-year population-based study and a Monte Carlo simulation study
Research Article
Kristin Gustavson1  Evalill Karevold1  Tilmann von Soest2  Espen Røysamb2 
[1] Division of Mental Health, Department of Child and Adolescent Mental Health, Norwegian Institute of Public Health, P.O. Box 4404, NO-0403, Nydalen, Oslo, Norway;Division of Mental Health, Department of Child and Adolescent Mental Health, Norwegian Institute of Public Health, P.O. Box 4404, NO-0403, Nydalen, Oslo, Norway;Department of Psychology, University of Oslo, P.O. Box 1072, NO-0316, Blindern, Oslo, Norway;
关键词: Longitudinal studies;    Public health;    Attrition;    Bias;    Simulation;   
DOI  :  10.1186/1471-2458-12-918
 received in 2012-04-04, accepted in 2012-10-17,  发布年份 2012
来源: Springer
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【 摘 要 】

BackgroundAttrition is one of the major methodological problems in longitudinal studies. It can deteriorate generalizability of findings if participants who stay in a study differ from those who drop out. The aim of this study was to examine the degree to which attrition leads to biased estimates of means of variables and associations between them.MethodsMothers of 18-month-old children were enrolled in a population-based study in 1993 (N=913) that aimed to examine development in children and their families in the general population. Fifteen years later, 56% of the sample had dropped out. The present study examined predictors of attrition as well as baseline associations between variables among those who stayed and those who dropped out of that study. A Monte Carlo simulation study was also performed.ResultsThose who had dropped out of the study over 15 years had lower educational level at baseline than those who stayed, but they did not differ regarding baseline psychological and relationship variables. Baseline correlations were the same among those who stayed and those who later dropped out. The simulation study showed that estimates of means became biased even at low attrition rates and only weak dependency between attrition and follow-up variables. Estimates of associations between variables became biased only when attrition was dependent on both baseline and follow-up variables. Attrition rate did not affect estimates of associations between variables.ConclusionsLong-term longitudinal studies are valuable for studying associations between risk/protective factors and health outcomes even considering substantial attrition rates.

【 授权许可】

CC BY   
© Gustavson et al.; licensee BioMed Central Ltd. 2012

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